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Simulating The Weather




        13 June 2006

       Ting-Shuo Yo
Outline
●   Properties of Atmospheric Models
●   A Brief History
●   Numerical Weather Prediction (NWP)
    –   Parameterization
    –   Data Assimilation
    –   Stochastic Weather Models
Properties of Atmospheric Models

  Properties of a model:

       ● Dynamic vs Static
       ● Continuous vs Discrete


       ● Deterministic vs Stochastic
Properties of Atmospheric Models

●   Dynamic




              Weather changes over time
Properties of Atmospheric Models

●   Dynamic
●   Continuous
        Solve differential equations
         - Physical systems can be described
           by a set of differential equations.

        Time-Advance: fixed-increment
              (In contrast to discrete-event)
Properties of Atmospheric Models

●   Dynamic
●   Continuous
●   Deterministic

        
       ∂V     
          V⋅∇ V =− ∇ P
       ∂t

        ∂h
           ∇⋅ H V = F
                   
        ∂t
Properties of Atmospheric Models

●   Dynamic
●   Continuous
●   Deterministic → Stochastic   (after late '90s)
Properties of Atmospheric Models

●   Dynamic
●   Continuous
●   Deterministic               →   Stochastic
       Nonliearity in
       differential equations

       Chaos

       Limited predictability
Initial condition uncertainty   5-day forecast uncertainty
Properties of Atmospheric Models
●   The System:
Properties of Atmospheric Models

●   Dynamic
●   Continuous
●   Deterministic → Stochastic
●   Complex System
A Brief History
Early 20th Centary
●   Bjerknes, Vilhelm    (Norwegian scientist)

    –   7 primitive equations
    –   Weather can be predicted through
        computation. (1904)
    –   Graphic calculus: solve equations
        through weather maps.
A Brief History (2)
Early 20th Centary (1922)
●   Richardson, Lewis Fry
    –   First numerical weather prediction (NWP)
        system
    –   Calculating techniques: division of space into
        grid cells, finite difference solutions of DEs
    –   Forecast Factory: 64,000 computers (people
        who do computations), each one will perform
        part of the calculation.
A Brief History (3)
Computer Age (1946~)
●   von Neumann and Charney
    –   Applied ENIAC to weather prediction

●   Carl-Gustaf Rossby
    –   The Swedish Institute of Meteorology
    –   First routine real-time numerical
        weather forecasting. (1954)
        ( US in 1958, Japan in 1959 )
Primitive Equations
Primitive Equations (2)

Horizontal Equations of          Continuity Equation
Motion                            Conservation of Mass
 Newton's 2nd law of motion
                                 Equation of State
The Hydrostatic Equation          Property of the ideal gas
 Vertical stratification
                                 Water Vapor Equation
Thermodynamic Equation
 The 1st law of thermodynamics
PE for ECMWF model
                                                                                                  East-west wind




                                                                                                North-south wind


                                                                                            
                                                                                                                         
                                                                                                          


                                                                                                Temperature

                                                                                                Humidity

                                                                                                Continuity of mass


                                                                                                Surface pressure
●   Simplify systems
    –   Add extra assumptions, e.g.,
         ●   barotropic model,
         ●   quasi-geostraphic model.


●   Increase computing power
    –   Improved numerical methods
    –   Parallel computing
A Brief History (4)
●   Norman Phillips
    –   First general circulation model (GCM, 1955)


●   Primitive equation (PE) models (late '50s ~ '70)

●   1980s : Interaction with other systems (e.g.
    ocean, land surface...etc.)
Properties of Atmospheric Models
●   The System:
System of Atmospheric Models
                     Forcing            solar heating,
                 Adding extra        long-wave cooling.....
                 energy


               Atmospheric Model
           (dynamic, cloud, precipitation )


                                Coupling
   Ocean model,
plant surface model...   Exchanging heat,
                         momentum and energy
Various Atmospheric Models
Resolution
                                              Computing Power Required


             Theoretical Models


                                     Operational
                                     Models



                          Coupled Models


                                              Earth System


                                                             Complexity
Outline
●   Properties of Atmospheric Models
●   A Brief History
●   Numerical Weather Prediction (NWP)
    –   Parameterization
    –   Data Assimilation
    –   Stochastic Weather Models
Parameterization
●   What is parameterization?
    –   Use parameters to represent sub-grid scale
        properties.

●   Why use parameterization?
    –   Make computation doable, both on computing
        power and numerical stability.
Parameterization

                Much of the weather
                occurs at scales smaller
                than those resolved by
                the weather forecast
                model. Model must
                treat, or “parameterize”
                the effects of the
                sub-grid scale on the
                resolved scale.




Source: MODIS
A lot happens inside a grid box
                  Rocky Mountains

                                    Approximate
                                    size of one
                                    grid box in
                                    NCEP
                                    ensemble
                                    system




                                          Denver


Source: accessmaps.com
Systems to be Parameterized
● Land surface
● Cloud micro-physics


● Turbulent diffusion and interactions with

  surface
● Orographic drag


● Radiative transfer
Parameterization Example
 Cloud Micro-physics

1.Build a detailed cloud model from observation.
2.Build a classifier for its output as a function
 with limited complexity.
3.Use this function in a mature regional/global
 model.
4.Repeat step 1 ~ 3 till satisfied.
NWP Flowchart
Data Assimilation

Data assimilation is the process through which
 real world observations:
●   Enter the model's forecast cycles
●   Provide a safeguard against model error growth
●   Contribute to the initial conditions for the next
    model run
Data Assimilation (2)
A model analysis is not made from observations
 alone. Rather, observations are used to make
 SMALL corrections to a short-range
 forecast, which is assumed to be good.
Example:
●   Obs. at 09:00 -> initial condition for a 3-hr
    forecast.
●   At 12:00, new obs. is corrected by the forecast
    done at 09:00, and then used for correcting the
    forecast for next 3-hr.
Data Assimilation (3)
Data Assimilation Procedure
●   Ingesting the data
●   Decoding coded observations
●   Weeding out bad data
●   Comparing the data to the model's short-range
    "first-guess" fields
●   Interpolating the data (in the form of model
    corrections) onto the model grid for making the
    forecast
Data Assimilation Procedure
Two Fundamental Difficulties in
           Data Assimilation
●   Transferring information from the scattered
    locations and times of the observations to the
    model grid, while at the same time.

●   Preserving the interrelated physical, dynamical,
    and numerical consistency in the short-range
    forecast, since these are essential to making
    consistently good NWP forecasts
Current state-of-the-art data assimilation:
4-dimensional variational assimilation (4D-Var)




                                        Courtesy
                                        ECMWF
4D-VAR
●   Introduced in November 1997
●   The influence of an observation in space and
    time is controlled by the model dynamics which
    increases its realism of the spreading out of the
    information.
●   The algorithm is designed to find a compromise
    between the previous forecast at the beginning
    of the time window, the observations, and the
    model evolution inside the time window.
Stochastic Weather Models
●   Stochastic-dynamic approach (climate prediction)
     - Ensemble of multiple models
     - Stochastic differential equations

●   Pure probabilistic approach
     For events hardly sketch by dynamics (e.g.
      precipitation)
Initial condition uncertainty   5-day forecast uncertainty
Ensemble forecasts

●   Generating initial conditions: Each center has
    adopted their own approximate way of sampling
    from initial condition pdf.
    ●   Breeding (NCEP)
    ●   Singular vector (ECMWF)
    ●   Perturbed observation (Canada)
● Stochastic-dynamic ensemble work just beginning
  (e.g., Buizza et al. 1999)
● Many attempts to post-process ensemble

  forecasts to provide reliable probability forecasts.
Pure Stochastic Weather Models
●   Bayesian Network
    Antonio et.al. (2002)




                            The performance is fair for
                            the preliminary study.
Conclusion
●   Dynamic, continuous, and deterministic models
●   Early development:
    –   Dynamic equations
    –   Numerical methods
●   Recent development:
    –   Parameterization
    –   Data assimilation
    –   Probabilistic (stochastic) approach
Questions?
Reference
●   P. N. Edwin, A Brief History of Atmospheric General Ciculation Modeling. General Circulation
    Model Development: Past, Present and Future, D. Randall, ed. (Academic Press, San Diego,
    2000), pp. 67-90.
●   A. Arakawa, Future Development of General Circulation Models. General Circulation Model
    Development: Past, Present and Future, D. Randall, ed. (Academic Press, San Diego, 2000),
    pp. 721-780.
●   T. N. Krishnamurti and L. Bounoua, An Introduction to Numerical Weather Prediction
    Techniques. CRC Press, Boca Raton, 1996, pp. 121-150.
●   J. R. Holton, An introduction to dynamic meteorology. (3rd Edition). International Geophysics
    Series, Academic Press, San Diego, 1992.
●   Wilks, D. S., and R. L. Wilby 1999 The weather generation game: a review of stochastic weather
    models. Progr. Phys. Geogr., 23, 329—357.
●   Antonio S. Cofiño, R. Cano, C. Sordo, José Manuel Gutiérrez: Bayesian Networks for
    Probabilistic Weather Prediction. ECAI 2002: 695-699
Okay. So how's NWP work?
1. First settle on the area to be looked at and define a grid with
an appropriate resolution.
2. Then gather weather readings for each grid point
(temperature, humidity, barometric pressure, wind speed and
direction, precipitation, etc.) at a number of different altitudes;
3. run your assimilation scheme to initialize the data so it fits
your model;
4. now run your model by stepping it forward in time -- but not
too far;
5. and go back to Step 2 again.
6. When you've finally stepped forward as far as the forecast
outlook, publish your prediction to the world.
7. And finally, analyze and verify how accurately your model
predicted the actual weather and revise it accordingly.
Is the weather even predictable or is
      the atmosphere chaotic?
That's a loaded question. We all know that weather forecasters are right only
  part of the time, and that they often give their predictions as percentages of
  possibilities. So can forecasters actually predict the weather or are they not
  doing much more than just playing the odds?



Part of the answer appears trivially easy -- if the sun is shining and the only
  clouds in the sky are nice little puffy ones, then even we can predict that the
  weather for the afternoon will stay nice -- probably. So of course the
  weathermen are actually doing their jobs (tho' they do play the odds).



But in spite of the predictability of the weather -- at least in the short-term -- the
  atmosphere is in fact chaotic, not in the usual sense of "random, disordered,
  and unpredictable," but rather, with the technical meaning of a deterministic
  chaotic system, that is, a system that is ordered and predictable, but in such
  a complex way that its patterns of order are revealed only with new
  mathematical tools.
Who first studied deterministic chaos?
Well, not so new. The French mathematical genius Poincaré studied the
  problem of determined but apparently unsolvable dynamic systems a
  hundred years ago working with the three-body problem. And the
  American Birkhoff and many others also studied chaotic systems in
  various contexts.
But its principles were serendipitously rediscovered in the early 1960s by
  the meteorologist Edward Lorenz of MIT. While working with a simplified
  model in fluid dynamics, he solved the same equations twice with
  seemingly identical data, but the second run through, trying to save a
  little computer time, he truncated his data from six to three decimal
  places, thinking it would make no difference to the outcome. He was
  surprised to get totally different solutions. He had rediscovered "sensitive
  dependence on initial conditions."
A 2-D image of a Lorenz attractor. Lorenz went on to elaborate the
   principles of chaotic systems, and is now considered to be the father of
   this area of study. He is usually credited with having coined the term
   "butterfly effect" -- can the flap of a butterfly's wings in Brazil spawn a
   tornado in Texas?
Characteristics of a chaotic system
Deterministic chaotic behavior is found
 throughout the natural world -- from the way
 faucets drip to how bodies in space orbit each
 other; from how chemicals react to the way the
 heart beats; from the spread of epidemics of
 disease to the ecology of predator-prey
 relationships; and, of course, in the dynamics of
 the earth's atmosphere.
Characteristics of a chaotic system (2)
Sensitive dependence on initial conditions -- starting from extremely similar but
  slightly different initial conditions they will rapidly move to different states.
  From this principle follow these two:
  * exponential amplification of errors -- any mistakes in describing the initial
  state of a system will therefore guarantee completely erroneous results; and
  * unpredictability of long-term behavior -- even extremely accurate starting
  data will not allow you to get long-term results: instead, you have to stop
  after a bit, measure your resulting data, plug them back into your model, and
  continue on.
Local instability, but global stability -- in the smallest scale the behavior is
  completely unpredictable, while in the large scale the behavior of the system
  "falls back into itself," that is, restabilizes.
Aperiodic -- the phenomenon never repeats itself exactly (tho' it may come
  close).
Non-random -- although the phenomenon may at some level contain random
  elements, it is not essentially random, just chaotic.
How many models are there?
Today, worldwide, there are at least a couple of
 dozen computer forecast models in use. They
 can be categorized by their:
●   resolution;
●   outlook or time-frame -- short-range, meaning
    one to two days out, and medium-range going
    out from three to seven days; and
●   forecast area or scale -- global (which usually
    means the Northern hemisphere), national, and
    relocatable.
How good are these models and the
   predictions based on them?
The short answer is, Not too bad, and a lot better than
  forecasting without them. The longer answer is in three parts:
  * Some of the models are much better at particular things than
  others; for example, as the USA Today article points out, the
  AVN "tends to perform better than the others in certain
  situations, such as strong low pressure near the East Coast,"
  and "the ETA has outperformed all the others in forecasting
  amounts of precipitation." For more on this subject, here's a
  slide show from NCEP.
  * The models are getting better and better as they are
  validated, updated, and replaced -- the "new" MRF has
  replaced the old (1995), and the ETA is replacing the NGM.
  * That's why they'll always need the weather man -- to interpret
  and collate the various computer predictions, add local
  knowledge, look out the window, and come up with a real
  forecast.

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Simulating Weather: Numerical Weather Prediction as Computational Simulation

  • 1. Simulating The Weather 13 June 2006 Ting-Shuo Yo
  • 2. Outline ● Properties of Atmospheric Models ● A Brief History ● Numerical Weather Prediction (NWP) – Parameterization – Data Assimilation – Stochastic Weather Models
  • 3. Properties of Atmospheric Models Properties of a model: ● Dynamic vs Static ● Continuous vs Discrete ● Deterministic vs Stochastic
  • 4. Properties of Atmospheric Models ● Dynamic Weather changes over time
  • 5. Properties of Atmospheric Models ● Dynamic ● Continuous Solve differential equations - Physical systems can be described by a set of differential equations. Time-Advance: fixed-increment (In contrast to discrete-event)
  • 6. Properties of Atmospheric Models ● Dynamic ● Continuous ● Deterministic  ∂V   V⋅∇ V =− ∇ P ∂t ∂h ∇⋅ H V = F   ∂t
  • 7. Properties of Atmospheric Models ● Dynamic ● Continuous ● Deterministic → Stochastic (after late '90s)
  • 8. Properties of Atmospheric Models ● Dynamic ● Continuous ● Deterministic → Stochastic Nonliearity in differential equations Chaos Limited predictability
  • 9. Initial condition uncertainty 5-day forecast uncertainty
  • 10. Properties of Atmospheric Models ● The System:
  • 11. Properties of Atmospheric Models ● Dynamic ● Continuous ● Deterministic → Stochastic ● Complex System
  • 12. A Brief History Early 20th Centary ● Bjerknes, Vilhelm (Norwegian scientist) – 7 primitive equations – Weather can be predicted through computation. (1904) – Graphic calculus: solve equations through weather maps.
  • 13. A Brief History (2) Early 20th Centary (1922) ● Richardson, Lewis Fry – First numerical weather prediction (NWP) system – Calculating techniques: division of space into grid cells, finite difference solutions of DEs – Forecast Factory: 64,000 computers (people who do computations), each one will perform part of the calculation.
  • 14. A Brief History (3) Computer Age (1946~) ● von Neumann and Charney – Applied ENIAC to weather prediction ● Carl-Gustaf Rossby – The Swedish Institute of Meteorology – First routine real-time numerical weather forecasting. (1954) ( US in 1958, Japan in 1959 )
  • 16. Primitive Equations (2) Horizontal Equations of Continuity Equation Motion Conservation of Mass Newton's 2nd law of motion Equation of State The Hydrostatic Equation Property of the ideal gas Vertical stratification Water Vapor Equation Thermodynamic Equation The 1st law of thermodynamics
  • 17. PE for ECMWF model East-west wind North-south wind                                                                                                                                                                                                                                                                                              Temperature Humidity Continuity of mass Surface pressure
  • 18. Simplify systems – Add extra assumptions, e.g., ● barotropic model, ● quasi-geostraphic model. ● Increase computing power – Improved numerical methods – Parallel computing
  • 19. A Brief History (4) ● Norman Phillips – First general circulation model (GCM, 1955) ● Primitive equation (PE) models (late '50s ~ '70) ● 1980s : Interaction with other systems (e.g. ocean, land surface...etc.)
  • 20.
  • 21. Properties of Atmospheric Models ● The System:
  • 22. System of Atmospheric Models Forcing solar heating, Adding extra long-wave cooling..... energy Atmospheric Model (dynamic, cloud, precipitation ) Coupling Ocean model, plant surface model... Exchanging heat, momentum and energy
  • 23. Various Atmospheric Models Resolution Computing Power Required Theoretical Models Operational Models Coupled Models Earth System Complexity
  • 24. Outline ● Properties of Atmospheric Models ● A Brief History ● Numerical Weather Prediction (NWP) – Parameterization – Data Assimilation – Stochastic Weather Models
  • 25. Parameterization ● What is parameterization? – Use parameters to represent sub-grid scale properties. ● Why use parameterization? – Make computation doable, both on computing power and numerical stability.
  • 26. Parameterization Much of the weather occurs at scales smaller than those resolved by the weather forecast model. Model must treat, or “parameterize” the effects of the sub-grid scale on the resolved scale. Source: MODIS
  • 27. A lot happens inside a grid box Rocky Mountains Approximate size of one grid box in NCEP ensemble system Denver Source: accessmaps.com
  • 28. Systems to be Parameterized ● Land surface ● Cloud micro-physics ● Turbulent diffusion and interactions with surface ● Orographic drag ● Radiative transfer
  • 29. Parameterization Example Cloud Micro-physics 1.Build a detailed cloud model from observation. 2.Build a classifier for its output as a function with limited complexity. 3.Use this function in a mature regional/global model. 4.Repeat step 1 ~ 3 till satisfied.
  • 31. Data Assimilation Data assimilation is the process through which real world observations: ● Enter the model's forecast cycles ● Provide a safeguard against model error growth ● Contribute to the initial conditions for the next model run
  • 32. Data Assimilation (2) A model analysis is not made from observations alone. Rather, observations are used to make SMALL corrections to a short-range forecast, which is assumed to be good. Example: ● Obs. at 09:00 -> initial condition for a 3-hr forecast. ● At 12:00, new obs. is corrected by the forecast done at 09:00, and then used for correcting the forecast for next 3-hr.
  • 34. Data Assimilation Procedure ● Ingesting the data ● Decoding coded observations ● Weeding out bad data ● Comparing the data to the model's short-range "first-guess" fields ● Interpolating the data (in the form of model corrections) onto the model grid for making the forecast
  • 36. Two Fundamental Difficulties in Data Assimilation ● Transferring information from the scattered locations and times of the observations to the model grid, while at the same time. ● Preserving the interrelated physical, dynamical, and numerical consistency in the short-range forecast, since these are essential to making consistently good NWP forecasts
  • 37. Current state-of-the-art data assimilation: 4-dimensional variational assimilation (4D-Var) Courtesy ECMWF
  • 38. 4D-VAR ● Introduced in November 1997 ● The influence of an observation in space and time is controlled by the model dynamics which increases its realism of the spreading out of the information. ● The algorithm is designed to find a compromise between the previous forecast at the beginning of the time window, the observations, and the model evolution inside the time window.
  • 39. Stochastic Weather Models ● Stochastic-dynamic approach (climate prediction) - Ensemble of multiple models - Stochastic differential equations ● Pure probabilistic approach For events hardly sketch by dynamics (e.g. precipitation)
  • 40. Initial condition uncertainty 5-day forecast uncertainty
  • 41. Ensemble forecasts ● Generating initial conditions: Each center has adopted their own approximate way of sampling from initial condition pdf. ● Breeding (NCEP) ● Singular vector (ECMWF) ● Perturbed observation (Canada) ● Stochastic-dynamic ensemble work just beginning (e.g., Buizza et al. 1999) ● Many attempts to post-process ensemble forecasts to provide reliable probability forecasts.
  • 42. Pure Stochastic Weather Models ● Bayesian Network Antonio et.al. (2002) The performance is fair for the preliminary study.
  • 43. Conclusion ● Dynamic, continuous, and deterministic models ● Early development: – Dynamic equations – Numerical methods ● Recent development: – Parameterization – Data assimilation – Probabilistic (stochastic) approach
  • 45. Reference ● P. N. Edwin, A Brief History of Atmospheric General Ciculation Modeling. General Circulation Model Development: Past, Present and Future, D. Randall, ed. (Academic Press, San Diego, 2000), pp. 67-90. ● A. Arakawa, Future Development of General Circulation Models. General Circulation Model Development: Past, Present and Future, D. Randall, ed. (Academic Press, San Diego, 2000), pp. 721-780. ● T. N. Krishnamurti and L. Bounoua, An Introduction to Numerical Weather Prediction Techniques. CRC Press, Boca Raton, 1996, pp. 121-150. ● J. R. Holton, An introduction to dynamic meteorology. (3rd Edition). International Geophysics Series, Academic Press, San Diego, 1992. ● Wilks, D. S., and R. L. Wilby 1999 The weather generation game: a review of stochastic weather models. Progr. Phys. Geogr., 23, 329—357. ● Antonio S. Cofiño, R. Cano, C. Sordo, José Manuel Gutiérrez: Bayesian Networks for Probabilistic Weather Prediction. ECAI 2002: 695-699
  • 46. Okay. So how's NWP work? 1. First settle on the area to be looked at and define a grid with an appropriate resolution. 2. Then gather weather readings for each grid point (temperature, humidity, barometric pressure, wind speed and direction, precipitation, etc.) at a number of different altitudes; 3. run your assimilation scheme to initialize the data so it fits your model; 4. now run your model by stepping it forward in time -- but not too far; 5. and go back to Step 2 again. 6. When you've finally stepped forward as far as the forecast outlook, publish your prediction to the world. 7. And finally, analyze and verify how accurately your model predicted the actual weather and revise it accordingly.
  • 47. Is the weather even predictable or is the atmosphere chaotic? That's a loaded question. We all know that weather forecasters are right only part of the time, and that they often give their predictions as percentages of possibilities. So can forecasters actually predict the weather or are they not doing much more than just playing the odds? Part of the answer appears trivially easy -- if the sun is shining and the only clouds in the sky are nice little puffy ones, then even we can predict that the weather for the afternoon will stay nice -- probably. So of course the weathermen are actually doing their jobs (tho' they do play the odds). But in spite of the predictability of the weather -- at least in the short-term -- the atmosphere is in fact chaotic, not in the usual sense of "random, disordered, and unpredictable," but rather, with the technical meaning of a deterministic chaotic system, that is, a system that is ordered and predictable, but in such a complex way that its patterns of order are revealed only with new mathematical tools.
  • 48. Who first studied deterministic chaos? Well, not so new. The French mathematical genius Poincaré studied the problem of determined but apparently unsolvable dynamic systems a hundred years ago working with the three-body problem. And the American Birkhoff and many others also studied chaotic systems in various contexts. But its principles were serendipitously rediscovered in the early 1960s by the meteorologist Edward Lorenz of MIT. While working with a simplified model in fluid dynamics, he solved the same equations twice with seemingly identical data, but the second run through, trying to save a little computer time, he truncated his data from six to three decimal places, thinking it would make no difference to the outcome. He was surprised to get totally different solutions. He had rediscovered "sensitive dependence on initial conditions." A 2-D image of a Lorenz attractor. Lorenz went on to elaborate the principles of chaotic systems, and is now considered to be the father of this area of study. He is usually credited with having coined the term "butterfly effect" -- can the flap of a butterfly's wings in Brazil spawn a tornado in Texas?
  • 49. Characteristics of a chaotic system Deterministic chaotic behavior is found throughout the natural world -- from the way faucets drip to how bodies in space orbit each other; from how chemicals react to the way the heart beats; from the spread of epidemics of disease to the ecology of predator-prey relationships; and, of course, in the dynamics of the earth's atmosphere.
  • 50. Characteristics of a chaotic system (2) Sensitive dependence on initial conditions -- starting from extremely similar but slightly different initial conditions they will rapidly move to different states. From this principle follow these two: * exponential amplification of errors -- any mistakes in describing the initial state of a system will therefore guarantee completely erroneous results; and * unpredictability of long-term behavior -- even extremely accurate starting data will not allow you to get long-term results: instead, you have to stop after a bit, measure your resulting data, plug them back into your model, and continue on. Local instability, but global stability -- in the smallest scale the behavior is completely unpredictable, while in the large scale the behavior of the system "falls back into itself," that is, restabilizes. Aperiodic -- the phenomenon never repeats itself exactly (tho' it may come close). Non-random -- although the phenomenon may at some level contain random elements, it is not essentially random, just chaotic.
  • 51. How many models are there? Today, worldwide, there are at least a couple of dozen computer forecast models in use. They can be categorized by their: ● resolution; ● outlook or time-frame -- short-range, meaning one to two days out, and medium-range going out from three to seven days; and ● forecast area or scale -- global (which usually means the Northern hemisphere), national, and relocatable.
  • 52. How good are these models and the predictions based on them? The short answer is, Not too bad, and a lot better than forecasting without them. The longer answer is in three parts: * Some of the models are much better at particular things than others; for example, as the USA Today article points out, the AVN "tends to perform better than the others in certain situations, such as strong low pressure near the East Coast," and "the ETA has outperformed all the others in forecasting amounts of precipitation." For more on this subject, here's a slide show from NCEP. * The models are getting better and better as they are validated, updated, and replaced -- the "new" MRF has replaced the old (1995), and the ETA is replacing the NGM. * That's why they'll always need the weather man -- to interpret and collate the various computer predictions, add local knowledge, look out the window, and come up with a real forecast.